Kernel regression based online boosting tracking

Hongwei Hu, Bo Ma, Yuwei Wu, Weizhang Ma, Kai Xie

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2 引用 (Scopus)

摘要

Although online boosting algorithm has received an increasing amount of interest in visual tracking, it is susceptible to class-label noise. Slight inaccuracies in the tracker can result in incorrectly labeled examples, which degrade the classifier and cause drift. This paper proposes a kernel regression based online boosting method for robust visual tracking. A nonlinear recursive least square algorithm which performs linear regression in a high-dimensional feature space induced by a Mercer kernel is employed to derive weak classifiers. Online sparsification to filter samples in feature space is adopted to reduce the computational cost of the recursive least square algorithm. In our method, weak classifiers themselves can be modified adaptively to cope with scene changes. Experimental results compared with several relevant tracking methods demonstrate the good performance of the proposed algorithm under challenging conditions.

源语言英语
页(从-至)267-282
页数16
期刊Journal of Information Science and Engineering
31
1
出版状态已出版 - 1 1月 2015

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Hu, H., Ma, B., Wu, Y., Ma, W., & Xie, K. (2015). Kernel regression based online boosting tracking. Journal of Information Science and Engineering, 31(1), 267-282.